北美洲的分区

问题描述 投票:0回答:1

我的目标是创造。

enter image description here

这是一个北美的Voronoi图 That's a Voronoi Diagram of North America. 问题是,当我运行我的代码时,错误地告诉我 IndexError: tuple index out of range. 我不知道为什么会出现这个错误,也不知道怎么解决。

这是我的代码。

import matplotlib.pyplot as plt
import geopandas as gpd
from shapely.ops import cascaded_union
from geovoronoi.plotting import subplot_for_map, plot_voronoi_polys_with_points_in_area
from geovoronoi import voronoi_regions_from_coords, points_to_coords

cities = gpd.read_file('world_populated_cities.csv')
world = gpd.read_file(gpd.datasets.get_path('naturalearth_lowres'))
na = world[world.continent == 'North America']

#cities = cities.geometry.to_crs(epsg=3857)
#na = na.to_crs(epsg=3857)
cities.crs = "EPSG:3857"
na.crs = "EPSG:3857"

na_shape = cascaded_union(na.geometry)
cities = cities.to_crs(na.crs)   # convert city coordinates to same CRS!

cities = cities[cities.geometry.within(na_shape)]

coords = points_to_coords(cities.geometry)
poly_shapes, pts, poly_to_pt_assignments = voronoi_regions_from_coords(coords, na_shape)

fig, ax = subplot_for_map()
plot_voronoi_polys_with_points_in_area(ax, na_shape, poly_shapes, coords)
ax.set_title('Cities data for South America from GeoPandas\nand Voronoi regions around them')
plt.tight_layout()
plt.savefig('using_geopandas.png')
plt.show()

我的代码也可以在这里找到(谷歌Colab笔记本)。https:/colab.research.google.comdrive1oDhWsbnrwLAKXpi-f8fhJlsdxhuQrxzw

我对地瓜比较陌生,所以非常感谢任何帮助!

python geo voronoi
1个回答
0
投票

如果有人偶然发现,可以通过设置正确的投影来生成图。

import matplotlib.pyplot as plt
import geopandas as gpd
from shapely.ops import cascaded_union
from geovoronoi.plotting import subplot_for_map, plot_voronoi_polys_with_points_in_area
from geovoronoi import voronoi_regions_from_coords, points_to_coords
cities = gpd.read_file('world_populated_cities.csv')
world = gpd.read_file(gpd.datasets.get_path('naturalearth_lowres'))
na = world[world.continent == 'North America']
cities.crs = ({'init': 'epsg:3857'}) 
cities = cities.to_crs({'init': 'epsg:4326'}) 
na_shape = cascaded_union(na.geometry)
cities = cities[cities.geometry.within(na_shape)]
coords = points_to_coords(cities.geometry)
poly_shapes, pts, poly_to_pt_assignments = voronoi_regions_from_coords(coords, na_shape)
fig, ax = subplot_for_map()
plot_voronoi_polys_with_points_in_area(ax, na_shape, poly_shapes, coords)
ax.set_title('Cities data for South America from GeoPandas\nand Voronoi regions around them')
plt.tight_layout()

城市文件是 此处.

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